混合云存储系统,增强多层密码系统,保证云环境下重复数据删除的安全性

Nagappan Mageshkumar , J. Swapna , A. Pandiaraj , R. Rajakumar , Moez Krichen , Vinayakumar Ravi
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引用次数: 0

摘要

重复数据删除是数据压缩领域的一项关键技术,旨在消除重复数据的冗余副本。由于能够有效地降低存储需求和优化带宽利用率,该技术在云存储领域获得了极大的普及。为了确保敏感数据的安全,同时促进重复数据删除,研究人员提出了融合加密的概念,作为一种潜在的解决方案。该技术涉及在数据外包之前对其进行加密,从而增强信息的机密性。在这项工作中,我们致力正式处理授权资料重复删除的问题,以加强资料保安。我们的方法结合了Diffie-Hellman算法和对称的外部决策来保护和普及信息,确保端到端加密,以鼓励用户采用云存储。该模型采用块级重复数据删除,并通过使用Diffie-Hellman算法生成加密密钥来保证密文的随机性。该方法有效地对抗了内部和外部的暴力攻击,在提高数据安全性的同时降低了计算成本。进行了广泛的实验,以证明我们的方法在具有多个特权集的场景中特别有益。总的来说,拟议的模型提供了一个精心设计的框架,可以维护数据隐私并加强安全措施,有助于实现更高效、更安全的基于云的文档搜索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid cloud storage system with enhanced multilayer cryptosystem for secure deduplication in cloud

Data deduplication is a crucial technique in the field of data compression that aims to eliminate redundant copies of recurring data. This technique has gained significant popularity in the realm of cloud storage due to its ability to effectively reduce storage requirements and optimize bandwidth utilization. To ensure the safeguarding of sensitive data while simultaneously facilitating deduplication, researchers have put forth the concept of convergent encryption as a potential solution. This technique involves encrypting the data prior to its outsourcing, thereby enhancing the confidentiality of the information. In this work, an earnest endeavor is undertaken to formally tackle the issue of authorized data deduplication, with the aim of enhancing data security. Our approach combines the Diffie-Hellman algorithm and symmetrical external decision to protect and popularize information, ensuring end-to-end encryption to encourage user adoption of cloud storage. The proposed model employs block-level deduplication and guarantees the randomness of ciphertexts by generating encryption keys using the Diffie-Hellman algorithm. This method effectively counters both internal and external brute-force attacks, enhancing data security while reducing computational costs. An extensive experimentation is carried out to demonstrate that our approach is particularly beneficial in scenarios with multiple privilege sets. Overall, the proposed model offers an elaborate framework that maintains data privacy and strengthens security measures, contributing to a more efficient and secure cloud-based document search.

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CiteScore
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